Machine learning approach for predictive maintenance of transport systems. Mallouk, I., Sallez, Y., & El Majd, B. A. In 2021 Third International Conference on Transportation and Smart Technologies (TST), pages 96–100, May, 2021.
doi  abstract   bibtex   
Transportation companies must face to a huge competition and must reduce downtime and the associated costs. This can be achieved through predictive maintenance (PM), which defines maintenance actions based on the health of the system and its environment. Relevant information can be extracted from massive data related to health prognosis and management (PHM) by applying artificial intelligence (AI) techniques. This paper proposes a Machine Learning approach to develop a prediction model based on a supervised learning by comparing several regression algorithms. The model is then applied to the Remaining useful mileage prediction of trucks tires for a transport application of dangerous substances.
@inproceedings{mallouk_machine_2021,
	title = {Machine learning approach for predictive maintenance of transport systems},
	doi = {10.1109/TST52996.2021.00023},
	abstract = {Transportation companies must face to a huge competition and must reduce downtime and the associated costs. This can be achieved through predictive maintenance (PM), which defines maintenance actions based on the health of the system and its environment. Relevant information can be extracted from massive data related to health prognosis and management (PHM) by applying artificial intelligence (AI) techniques. This paper proposes a Machine Learning approach to develop a prediction model based on a supervised learning by comparing several regression algorithms. The model is then applied to the Remaining useful mileage prediction of trucks tires for a transport application of dangerous substances.},
	booktitle = {2021 {Third} {International} {Conference} on {Transportation} and {Smart} {Technologies} ({TST})},
	author = {Mallouk, Issam and Sallez, Yves and El Majd, Badr Abou},
	month = may,
	year = {2021},
	keywords = {Machine Learning, Machine learning, Prediction algorithms, Prediction model, Predictive models, Stakeholders, Supervised learning, Tires, Transportation, Useful life, regression, transportation},
	pages = {96--100},
}

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